Privacy, Bias and Societal Concerns

The widespread adoption of AI-powered image editing tools raises significant concerns regarding privacy, bias, and potential societal ramifications. These tools, capable of manipulating both 2D and 3D images with remarkable realism, introduce ethical dilemmas and require careful consideration.

What you will learn from this chapter:

Impact on Society

The ability to effortlessly edit and alter images has the potential to:

Current approaches

Several approaches are currently being employed to address these concerns:

Future scope

The future of AI-edited images will likely involve:

This is a rapidly evolving field, and it is crucial to stay informed about the latest developments.

Conclusion

This section concludes our unit on Generative Vision Models, where you have learned about Generative Adversarial Networks, Variational Auto Encoders and Diffusion Models. You saw how they can be implemented and used, and in this chapter, you also learned about the important topic of ethics and biases concerning these models.

With the end of this unit, you have also finished the most fundamental part of this course, which includes Fundamentals, Convolutional Neural Networks, Vision Transformers and Generative Models. In the next chapters we will dive deeper into specialized fields like Video and Video Processing, 3D Vision, Scene Rendering and Reconstruction and Model Optimization. But first, we will have a look at basic Computer Vision tasks - what they are used for, what defines them and how they are evaluated.

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